DocumentCode
110683
Title
Low Bias Local Intrinsic Dimension Estimation from Expected Simplex Skewness
Author
Johnsson, Kerstin ; Soneson, Charlotte ; Fontes, Marcia
Author_Institution
Centre for Math. Sci., Lund Univ., Lund, Sweden
Volume
37
Issue
1
fYear
2015
fDate
Jan. 1 2015
Firstpage
196
Lastpage
202
Abstract
In exploratory high-dimensional data analysis, local intrinsic dimension estimation can sometimes be used in order to discriminate between data sets sampled from different low-dimensional structures. Global intrinsic dimension estimators can in many cases be adapted to local estimation, but this leads to problems with high negative bias or high variance. We introduce a method that exploits the curse/blessing of dimensionality and produces local intrinsic dimension estimators that have very low bias, even in cases where the intrinsic dimension is higher than the number of data points, in combination with relatively low variance. We show that our estimators have a very good ability to classify local data sets by their dimension compared to other local intrinsic dimension estimators; furthermore we provide examples showing the usefulness of local intrinsic dimension estimation in general and our method in particular for stratification of real data sets.
Keywords
data analysis; expected simplex skewness; exploratory high-dimensional data analysis; global intrinsic dimension estimators; low bias local intrinsic dimension estimation; low-dimensional structures; real data set stratification; Calibration; Distributed databases; Eigenvalues and eigenfunctions; Estimation; Manifolds; Noise; Vectors; Intrinsic dimension estimation; manifold learning;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2014.2343220
Filename
6866171
Link To Document